Karimi-Rouzbahani Hamid, Bagheri Nasour, Ebrahimpour Reza
Department of Electrical Engineering, Shahid Rajaee Teacher Training University, Tehran, Iran; School of Cognitive Sciences, Institute for Research in Fundamental Sciences (IPM), Tehran, Iran.
Cognitive Science Research Lab., Department of Computer Engineering, Shahid Rajaee Teacher Training University, Lavizan, Tehran, Iran; School of Cognitive Sciences, Institute for Research in Fundamental Sciences (IPM), Tehran, Iran; Institute for Advanced Technologies, Shahid Rajaee Teacher Training University, Lavizan, Tehran, Iran.
Neuroscience. 2017 Mar 27;346:14-28. doi: 10.1016/j.neuroscience.2017.01.002. Epub 2017 Jan 11.
To categorize the perceived objects, brain utilizes a broad set of its resources and encoding strategies. Yet, it remains elusive how the category information is encoded in the brain. While many classical studies have sought the category information in the across-trial-averaged activity of neurons/neural populations, several recent studies have observed category information also in the within-trial correlated variability of activities between neural populations (i.e. dependent variability). Moreover, other studies have observed that independent variability of activity, which is the variability of the measured neural activity without any influence from correlated variability with other neurons/populations, could also be modulated for improved categorization. However, it was unknown how important each of the three factors (i.e. average activity, dependent and independent variability of activities) was in category encoding. Therefore, we designed an EEG experiment in which human subjects viewed a set of object exemplars from four categories. Using a computational model, we evaluated the contribution of each factor separately in category encoding. Results showed that the average activity played a significant role while the independent variability, although effective, contributed moderately to the category encoding. The inter-channel dependent variability showed an ignorable effect on the encoding. We also investigated the role of those factors in the encoding of variations which showed similar effects. These results imply that the brain, rather than variability, seems to use the average activity to convey information on the category of the perceived objects.
为了对感知到的物体进行分类,大脑会利用其广泛的资源和编码策略。然而,类别信息在大脑中是如何编码的仍然不清楚。虽然许多经典研究在神经元/神经群体的跨试验平均活动中寻找类别信息,但最近的一些研究也在神经群体之间活动的试验内相关变异性(即依赖变异性)中观察到了类别信息。此外,其他研究观察到,活动的独立变异性,即测量到的神经活动的变异性,不受与其他神经元/群体的相关变异性的任何影响,也可以被调节以改善分类。然而,这三个因素(即平均活动、活动的依赖和独立变异性)在类别编码中各自的重要性尚不清楚。因此,我们设计了一个脑电图实验,让人类受试者观看来自四个类别的一组物体样本。使用一个计算模型,我们分别评估了每个因素在类别编码中的贡献。结果表明,平均活动起着重要作用,而独立变异性虽然有效,但对类别编码的贡献适中。通道间的依赖变异性对编码的影响可忽略不计。我们还研究了这些因素在变异编码中的作用,结果显示了类似的效果。这些结果表明,大脑似乎是利用平均活动来传达关于感知物体类别的信息,而不是变异性。